Amini, G. & Davood Abadi, A. 2014. Estimating household water demand of the city of Qom using artificial neural networks and log linear regression. 1st Water Sciences and Engineering Conference, Tehran, Iran. (In Persian).
Amini, G., Entezam, H., Sadeghpour, A. & Davood Abadi, A. 2018a. Application of data mining to identify subscribers with unauthorized use of water (case study of Qom water and wastewater company). 2nd Iran Water and Wastewater Science Engineering Congress and National Conference on Demand & Supply of Drinking Water and Sanitation, Isfahan, Iran. (In Persian).
Amini, G., Entezam, H., Sadeghpour, A. & Davood Abadi, A. 2018b. Identification and extraction of water consumption patterns by data mining (Case study of Qom water and wastewater company). 2nd Iran Water and Wastewater Science Engineering Congress and National Conference on Demand & Supply of Drinking Water and Sanitation, Isfahan, Iran. (In persian).
Amini, G. & Saeidi, Z. 2017. Identification of meteorological parameters affecting water consumption in household sector of Qom. Journal of Water and Wastewater, 29(2), 48-58. (In Persian)
Amoozagar, M. 2016. Provides a two-step solution to identify the pattern of power consumption. Iranian Electric Industry Journal of Quality and Productivity, 5, 48-57. (In persian).
Anita, B. D. & Ravindra, D. 2013. Data mining techniques for fraud detection. Journal of Computer Science and Information Technologies, 4, 1-4.
Hashem, E. & Humaid, S. 2012. A data mining based fraud detection model for water consumption billing system in MOG. MSc Thesis, Islamic University of Gaza.
Hassanat, A. B., Abbadi, M. A., A., A. G. & Alhasanat, A. A. 2014. Solving the problem of the k parameter in the knn classifier using an ensemble learning approach. Journal of Computer Science and Information Security, 12, 33-39.
Hosseini, R., Sarmad, M. & Noghabi, M. 2013. Data mining in r by rattle package. Jornal of Andishe- ye Amari, 35, 17-29. (In Persian)
Kajori, M., Feriedunian, A. & Lesani, H. 2015. Identifying the pattern of electric energy consumption with data mining. 30th International Electrical Conference, Tehran, Iran. (In Persian).
Kasaeyan, A. & Ghayni, M. 2017. Examining unauthorized consumption detection methods based on measurement data in intelligent network structure. 32nd International Electrical Conference, Tehran, Iran. (In Persian).
Minaie, B., Dianat, R., Hani, H. & Sobhaninia, M. 2011. Identify fraudsters in service organizations using data mining. MSc Information Technology, University of Qom, Iran. (In Persian).
Monedero, I., Biscarri, F., Guerrero, J., Roldan, M. & Leon, C. 2015. An approach to detection of tampering in water meters. 19th International Conference on Knowledge Based and Intelligent Information and Engineering Systems, National Uiversity of Singapore, Singapore.
Monika, C. & Amarpreet, K. 2018. A comparative study of classification techniques for fraud detection. Journal on Future Revolution in Computer Science & Communication Engineering, 4, 19-23.
Navanshu, K. & Saad, Y. S. 2018. Credit card fraud detection using machine learning modeles and collating machine learning models. Journal of Pure and Applied Mathematics, 118, 825-838.
Rastgar, H. 2010. Investigating aggregation clustering algorithms and simulating and executing a sample. MSc Thesis, Payame Noor University of Mashhad, Mashhad, Iran. (In Persian)